- Anastassiou, George A., 1952- author.
- Cham, Switzerland : Springer, 2018.
- Description
- Book — 1 online resource (x, 319 pages) Digital: text file.PDF.
- Summary
-
- A strong left Fractional Calculus for Banach space valued functions.- Strong Right Abstract Fractional Calculus.- Strong mixed and generalized Abstract Fractional Calculus.- Foundations of General Fractional Analysis for Banach space valued functions.- Vector abstract fractional Korovkin Approximation.- Basic Abstract Korovkin theory.- High Approximation for Banach space valued functions.- Vectorial abstract fractional approximation using linear operators.- Abstract fractional trigonometric Korovkin approximation.- Multivariate Abstract Approximation for Banach space valued functions.- Arctangent function based Abstract Neural Network approximation. .
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Cham : Springer, 2018.
- Description
- Book — 1 online resource (ix, 119 pages) : illustrations Digital: text file; PDF.
- Summary
-
- Page Rank vs. Katz: Is the centrality algorithm choice relevant to measure user influence in Twitter?.- Weighted means based filters for SAR Imagery.- On Combination of Wavelet Transformation and Stabilized KH Interpolation for Fuzzy Inferences Based on High Dimensional Sampled Functions.- Abductive Reasoning on Molecular Interaction Maps.- Efficient unfolding of fuzzy connectives for multi-adjoint logic programs.- On Generalizations of Concept Lattices.- Generating fuzzy attribute rules via Fuzzy Formal Concept Analysis.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
43. Genetic algorithm essentials [2017]
- Kramer, Oliver, author.
- Cham, Switzerland : Springer, 2017.
- Description
- Book — 1 online resource (ix, 92 pages) : color illustrations Digital: text file.PDF.
- Summary
-
- Part I: Foundations.- Introduction.- Genetic Algorithms.- Parameters.- Part II: Solution Spaces.- Multimodality.- Constraints.- Multiple Objectives.- Part III: Advanced Concepts.- Theory.- Machine Learning.- Applications.- Part IV: Ending.- Summary and Outlook.- Index.- References.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
44. Granular-relational data mining : how to mine relational data in the paradigm of granular computing? [2017]
- Hońko, Piotr, author.
- Cham, Switzerland : Springer, 2017.
- Description
- Book — 1 online resource (xv, 123 pages) : illustrations Digital: text file.PDF.
- Summary
-
- Preface.-
- Chapter 1: Introduction.- Part I: Generalized Related Set Based Approach.-
- Chapter 2: Information System for Relational Data.-
- Chapter 3: Properties of Granular-Relational Data Mining Framework.-
- Chapter 4: Association Discovery and Classification Rule Mining.-
- Chapter 5: Rough-Granular Computing.- Part II: Description Language Based Approach.-
- Chapter 6: Compound Information Systems.-
- Chapter 7: From Granular-Data Mining Framework to its Relational Version.-
- Chapter 8: Relation-Based Granules.-
- Chapter 9: Compound Approximation Spaces.- Conclusions.- References.- Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
45. Robustness in econometrics [2017]
- Cham, Switzerland : Springer, 2017.
- Description
- Book — 1 online resource (x, 705 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Part I Keynote Addresses: Robust Estimation of Heckman Model.- Part II Fundamental Theory: Sequential Monte Carlo Sampling for State Space Models.- Robustness as a Criterion for Selecting a Probability Distribution Under Uncertainty.- Why Cannot We Have a Strongly Consistent Family of Skew Normal (and Higher Order) Distributions.- Econometric Models of Probabilistic Choice: Beyond McFadden's Formulas.- How to Explain Ubiquity of Constant Elasticity of Substitution (CES) Production and Utility Functions Without Explicitly Postulating CES.- How to Make Plausibility-Based Forecasting More Accurate.- Structural Breaks of CAPM-type Market Model with Heteroskedasticity and Quantile Regression.- Weighted Least Squares and Adaptive Least Squares: Further Empirical Evidence.- Prior-free probabilistic inference for econometricians.- Robustness in Forecasting Future Liabilities in Insurance.- On Conditioning in Multidimensional Probabilistic Models.- New Estimation Method for Mixture of Normal Distributions.- EM Estimation for Multivariate Skew Slash Distribution.- Constructions of multivariate copulas.- Plausibility regions on the skewness parameter of skew normal distributions based on inferential models.- International Yield Curve Prediction with Common Functional Principal Component Analysis.- An alternative to p-values in hypothesis testing with applications in model selection of stock price data.- Confidence Intervals for the Common Mean of Several Normal Populations.- A generalized information theoretical approach to Non-linear time series model.- Predictive recursion maximum likelihood of Threshold Autoregressive model.- A multivariate generalized FGM copulas and its application to multiple regression.- Part III Applications: Key Economic Sectors and Their Transitions: Analysis of World Input-Output Network.- Natural Resources, Financial Development and Sectoral Value Added in a Resource Based Economy.- Can bagging improve the forecasting performance of tourism demand models?.- The Role of Asian Credit Default Swap Index in Portfolio Risk Management.- Chinese outbound tourism demand to Singapore, Malaysia and Thailand destinations: A study of political events and holiday impacts.- Forecasting Asian Credit Default Swap spreads: A comparison of multi-regime models.- Forecasting Asian Credit Default Swap spreads: A comparison of multi-regime models.- Effect of Helmet Use on Severity of Head Injuries Using Doubly Robust Estimators.- Forecasting cash holding with cash deposit using time series approaches.- Forecasting GDP Growth in Thailand with Different Leading Indicators using MIDAS regression models.- Testing the Validity of Economic Growth Theories Using Copula-based Seemingly Unrelated Quantile Kink Regression.- Analysis of Global Competitiveness Using Copula-based Stochastic Frontier Kink Model.- Gravity model of trade with Linear Quantile Mixed Models approach.- Stochastic Frontier Model in Financial Econometrics: A Copula-based Approach.- Quantile Forecasting of PM10 Data in Korea based on Time Series Models.- Do We Have Robust GARCH Models under Different Mean Equations: Evidence from Exchange Rates of Thailand?.- Joint Determinants of Foreign Direct Investment (FDI) Inflow in Cambodia: A Panel Co-integration Approach.- The Visitors' Attitudes and Perceived Value toward Rural Regeneration Community Development of Taiwan.- Analyzing the contribution of ASEAN stock markets to systemic risk.- Estimating Efficiency of Stock Return with Interval Data.- The impact of extreme events on portfolio in financial risk management.- Foreign Direct Investment, Exports and Economic Growth in ASEAN Region: Empirical Analysis from Panel Data.- Author Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Cham, Switzerland : Springer, 2017.
- Description
- Book — 1 online resource (xi, 233 pages) : illustrations Digital: text file.PDF.
- Summary
-
These transactions publish research in computer-based methods of computational collective intelligence (CCI) and their applications in a wide range of fields such as the semantic Web, social networks, and multi-agent systems. TCCI strives to cover new methodological, theoretical and practical aspects of CCI understood as the form of intelligence that emerges from the collaboration and competition of many individuals (artificial and/or natural). The application of multiple computational intelligence technologies, such as fuzzy systems, evolutionary computation, neural systems, consensus theory, etc., aims to support human and other collective intelligence and to create new forms of CCI in natural and/or artificial systems. This twenty-sixth issue is a special issue with selected papers from the First International KEYSTONE Conference 2015 (IKC 2015), part of the keystone COST Action IC1302.
(source: Nielsen Book Data)
47. Sentiment analysis and ontology engineering : an environment of computational intelligence [2016]
- Switzerland : Springer, 2016.
- Description
- Book — 1 online resource (x, 456 pages) : illustrations (some color)
- Summary
-
- Fundamentals of Sentiment Analysis and Its Applications
- Fundamentals of Sentiment Analysis: Concepts and Methodology
- The Comprehension of Figurative Language: What is the Influence of Irony and Sarcasm on NLP Techniques?
- Probabilistic Approaches for Sentiment Analysis: Latent Dirichlet Allocation for Ontology Building and Sentiment Extraction
- Description Logic Class Expression Learning Applied to Sentiment Analysis
- Capturing Digest Emotions by Means of Fuzzy Linguistic Aggregation
- Hyperelastic-based Adaptive Dynamics Methodology in Knowledge Acquisition for Computational Intelligence on Ontology Engineering of Evolving Folksonomy Driven Environment
- Sentiment-Oriented Information Retrieval: Affective Analysis of Documents Based on the SenticNet Framework
- Interpretability of Computational Models for Sentiment Analysis
- Chinese Micro-blog Emotion Classification by Exploiting Linguistic Features and SVMperf
- Social Media and News Sentiment Analysis for Advanced Investment Strategies
- Context Aware Customer Experience Management: A Development Framework Based on Ontologies and Computational Intelligence
- An Overview of Sentiment Analysis in Social Media and Its Applications in Disaster Relief
- Big Data Sentiment Analysis for Brand Monitoring in Social Media Streams by Cloud Computing
- Neuro-Fuzzy Sentiment Analysis for Customer Review Rating Prediction
- OntoLSA: An Integrated Text Mining System for Ontology Learning and Sentiment Analysis
- Knowledge-based Tweet Classification for Disease Sentiment Monitoring.
- Cham : Springer, 2016.
- Description
- Book — 1 online resource (x, 234 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Neurocognitive Robot Assistant for Robust Fall Detection .-Smart Robot Control via Novel Computational Intelligence Methods for Ambient Assisted Living
- Valorization of Assistive Technologies for Cognition: Lessons & Practices
- Safe and Automatic Addition of Fault Tolerance for Smart Homes Dedicated to People with Disabilities
- Smart Homes in the Era of Big Data
- An Investigation of The Use of Innovative Biology-based Computational Intelligence in Ubiquitous Robotics Systems: Data Mining Perspective
- Ambient Stupidity
- Security Implementations in Smart Sensor Networks
- Automatic Music Composition from a Self- Learning Algorithm.
- Cham : Springer, 2015.
- Description
- Book — 1 online resource (x, 213 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Intro; Contents; Contributors; Introduction; Part I Search and Optimization; A Metaheuristic for Optimizing the Performance and the Fairness in Job Scheduling Systems; 1 Introduction; 2 Problem Description; 2.1 Machines; 2.2 Jobs; 2.3 Optimization Criteria; 3 Overview of Existing Scheduling Approaches; 3.1 Standard Scheduling Algorithms; 3.2 Scheduling with Job Runtime Estimates; 3.3 User-to-User Fairness and Fair-Share; 3.4 Advanced Optimization Methods; 3.5 Summary; 4 Metaheuristic Scheduler; 4.1 Linear Schedule Compression; 4.2 Schedule Evaluation.
- 4.3 Metaheuristic for Schedule Optimization5 Experiments; 5.1 Simulation Setup; 5.2 Experimental Results; 5.3 Summary; 6 Conclusion and Future Work; References; Hybrid ACO and Tabu Search for Large Scale Information Retrieval; 1 Introduction; 2 Information Retrieval Background; 3 Lex as a Tool for Documents Indexing; 4 AC-IR Algorithm; 4.1 Solutions Encoding; 4.2 Pheromone Table and Probabilistic Decision Rules; 4.3 Updating the Pheromone; 4.4 Building and Improving a Solution; 5 ACS-IR Algorithm; 6 The Overall Algorithm; 7 Experimental Results; 7.1 Benchmarks; 7.2 Setting the Parameters.
- 7.3 Comparison of AS-IR, ACS-IR and CL-IR Algorithms8 Conclusion; References; Hosting Clients in Clustered and Virtualized Environment: A Combinatorial Optimization Approach; 1 Introduction; 1.1 Hardware Virtualization Technology; 1.2 Cluster Computing Technology; 1.3 Clients Hosting Problem; 2 Resource Allocation Problem; 3 Helpful Optimization Problems and Tools; 3.1 2-Dimensional Bin-Packing Problem; 3.2 The Max-Min Problem; 3.3 Data-Set and Solving Tool; 3.4 Branch-and-Bound Search; 4 Proposed Approach; 5 Integer Programming Models; 5.1 Minimizing the Number of Clusters.
- 5.2 Heavy Clients Distribution5.3 Balancing the Use of Resources; 6 Discussions; 7 Conclusion; References; Part II Machine Learning; On the Application of Artificial Intelligence Techniques to Create Network Intelligence; 1 Introduction; 1.1 AI for Internet of Things; 1.2 AI for Telecommunication Networks; 2 Graph Theory for Virus Epidemic Prediction; 2.1 State of the Art; 2.2 Architecture and Implementation; 3 Machine Learning for Smart Building Energy Management; 3.1 State of the Art; 3.2 Architecture and Implementation; 4 Intelligent Middleware for Cloud Robotics; 4.1 State of the Art.
- 4.2 Architecture and Implementation5 Multiple Neural Networks for Client Profiling on Telecommunication Networks; 5.1 State of the Art; 5.2 Architecture and Implementation; 6 Alarm Prediction on Telecommunication Networks; 6.1 State of the Art; 6.2 Architecture and Implementation; 7 Conclusions and Further Applications of AI in ICT; 7.1 Future Work on the Reported Solutions; 7.2 Further Applications of AI on ICT; References; A Statistical Framework for Mental Targets Search Using Mixture Models; 1 Introduction; 2 Related Work; 3 The Framework Structure; 4 Data Model; 5 Update Model.
- Cetnarowicz, Krzysztof, author.
- Cham : Springer, 2015.
- Description
- Book — 1 online resource (xi, 140 pages) : illustrations (some color) Digital: text file; PDF.
- Summary
-
- Introduction to the subject of an agent in computer science.- Agent versus decomposition of an algorithm.- M-agent.- The agent system for balancing the distribution of resources.- The examples of applications of the agent systems.- Conclusion. Introduction to the subject of an agent in computer science.- Agent versus decomposition of an algorithm.- M-agent.- The agent system for balancing the distribution of resources.- The examples of applications of the agent systems.- Conclusion.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
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